Title of article :
A permutation test approach to the choice of size k for the nearest neighbors classifier
Author/Authors :
Yinglei Lai، نويسنده , , Baolin Wu&Hongyu Zhao، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
The k nearest neighbors (k-NN) classifier is one of the most popular methods for statistical pattern recognition
and machine learning. In practice, the size k, the number of neighbors used for classification, is
usually arbitrarily set to one or some other small numbers, or based on the cross-validation procedure. In
this study,we propose a novel alternative approach to decide the size k. Based on a k-NN-based multivariate
multi-sample test, we assign each k a permutation test based Z-score. The number of NN is set to the k
with the highest Z-score. This approach is computationally efficient since we have derived the formulas
for the mean and variance of the test statistic under permutation distribution for multiple sample groups.
Several simulation and real-world data sets are analyzed to investigate the performance of our approach.
The usefulness of our approach is demonstrated through the evaluation of prediction accuracies using Zscore
as a criterion to select the size k.We also compare our approach to the widely used cross-validation
approaches. The results show that the size k selected by our approach yields high prediction accuracies
when informative features are used for classification, whereas the cross-validation approach may fail in
some cases.
Keywords :
number of neighbors , Permutation test , Prediction accuracy , cross-validation , Nearest neighbors classifier
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS